Improved feature point extraction and mismatch eliminating algorithm

For the existing image matching algorithms, some inherent shortcomings, such as high mismatch rate and low computational efficiency, give rise to a bad influence on the performance of Visual Simultaneous Localization and Mapping (VSLAM). In this paper, a Grid-Based Motion Statistics for Fast and Ran...

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Main Authors: Dongyue Sun, Sunjie Zhang, Yongxiong Wang
Format: Article
Language:English
Published: Taylor & Francis Group 2020-01-01
Series:Systems Science & Control Engineering
Subjects:
Online Access:http://dx.doi.org/10.1080/21642583.2019.1707725
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spelling doaj-b3da70d4f1ba499ea2b35128850843112020-12-17T14:55:57ZengTaylor & Francis GroupSystems Science & Control Engineering2164-25832020-01-0181112110.1080/21642583.2019.17077251707725Improved feature point extraction and mismatch eliminating algorithmDongyue Sun0Sunjie Zhang1Yongxiong Wang2Department of Control Science and Engineering, University of Shanghai for Science and TechnologyDepartment of Control Science and Engineering, University of Shanghai for Science and TechnologyDepartment of Control Science and Engineering, University of Shanghai for Science and TechnologyFor the existing image matching algorithms, some inherent shortcomings, such as high mismatch rate and low computational efficiency, give rise to a bad influence on the performance of Visual Simultaneous Localization and Mapping (VSLAM). In this paper, a Grid-Based Motion Statistics for Fast and Random Sample Consensus (GMS-RANSAC) method combining with Multi-Probe Location Sensitive Hash (LSH)-based Adaptive and Generic Corner Detection Based on the Accelerated Segment Test and Oriented FAST and Rotated BRIEF (AGAST-ORB) algorithm is proposed to improve the real time and accuracy of image matching. To this end, the AGAST algorithm and the multi-probe LSH algorithm are firstly integrated into the traditional ORB algorithm to obtain the initial matching set. Specifically, the image feature points are extracted by the AGAST algorithm and then the main direction of feature points is given according to the intensity centroid method to guarantee the rotary invariant of feature points. Based on the extracted feature points, the multi-probe LSH algorithm, benefiting from its high time efficiency, is used to generate the initial matching pairs. In what follows, a GMS-RANSAC algorithm, which is improved by adding a directional similarity constraint model and the traditional RANSAC algorithm, is performed to improve the accuracy of eliminating result further. Finally, the performance test is implemented via a Mikolajczyk standard data set and it is verified that the proposed algorithm has higher matching precision and matching efficiency than traditional image matching algorithms.http://dx.doi.org/10.1080/21642583.2019.1707725image matchingmismatchingagast corner detectionmulti-probe lsh algorithmdirection constraint model
collection DOAJ
language English
format Article
sources DOAJ
author Dongyue Sun
Sunjie Zhang
Yongxiong Wang
spellingShingle Dongyue Sun
Sunjie Zhang
Yongxiong Wang
Improved feature point extraction and mismatch eliminating algorithm
Systems Science & Control Engineering
image matching
mismatching
agast corner detection
multi-probe lsh algorithm
direction constraint model
author_facet Dongyue Sun
Sunjie Zhang
Yongxiong Wang
author_sort Dongyue Sun
title Improved feature point extraction and mismatch eliminating algorithm
title_short Improved feature point extraction and mismatch eliminating algorithm
title_full Improved feature point extraction and mismatch eliminating algorithm
title_fullStr Improved feature point extraction and mismatch eliminating algorithm
title_full_unstemmed Improved feature point extraction and mismatch eliminating algorithm
title_sort improved feature point extraction and mismatch eliminating algorithm
publisher Taylor & Francis Group
series Systems Science & Control Engineering
issn 2164-2583
publishDate 2020-01-01
description For the existing image matching algorithms, some inherent shortcomings, such as high mismatch rate and low computational efficiency, give rise to a bad influence on the performance of Visual Simultaneous Localization and Mapping (VSLAM). In this paper, a Grid-Based Motion Statistics for Fast and Random Sample Consensus (GMS-RANSAC) method combining with Multi-Probe Location Sensitive Hash (LSH)-based Adaptive and Generic Corner Detection Based on the Accelerated Segment Test and Oriented FAST and Rotated BRIEF (AGAST-ORB) algorithm is proposed to improve the real time and accuracy of image matching. To this end, the AGAST algorithm and the multi-probe LSH algorithm are firstly integrated into the traditional ORB algorithm to obtain the initial matching set. Specifically, the image feature points are extracted by the AGAST algorithm and then the main direction of feature points is given according to the intensity centroid method to guarantee the rotary invariant of feature points. Based on the extracted feature points, the multi-probe LSH algorithm, benefiting from its high time efficiency, is used to generate the initial matching pairs. In what follows, a GMS-RANSAC algorithm, which is improved by adding a directional similarity constraint model and the traditional RANSAC algorithm, is performed to improve the accuracy of eliminating result further. Finally, the performance test is implemented via a Mikolajczyk standard data set and it is verified that the proposed algorithm has higher matching precision and matching efficiency than traditional image matching algorithms.
topic image matching
mismatching
agast corner detection
multi-probe lsh algorithm
direction constraint model
url http://dx.doi.org/10.1080/21642583.2019.1707725
work_keys_str_mv AT dongyuesun improvedfeaturepointextractionandmismatcheliminatingalgorithm
AT sunjiezhang improvedfeaturepointextractionandmismatcheliminatingalgorithm
AT yongxiongwang improvedfeaturepointextractionandmismatcheliminatingalgorithm
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